A Spatial Regulated Patch-Wise Approach for Cervical Dysplasia Diagnosis

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Abstract

Cervical dysplasia diagnosis via visual investigation is a challenging problem. Recent approaches use deep learning techniques to extract features and require the downsampling of high-resolution cervical screening images to smaller sizes for training. Such a reduction may result in the loss of visual details that appear weakly and locally within a cervical image. To overcome this challenge, our work divides an image into patches and then represents it from patch features. We aggregate patch patterns into an image feature in a weighted manner by considering the patch-image relationship. The weights are visualized as a heatmap to explain where the diagnosis results come from. We further introduce a spatial regulator to guide the classifier to focus on the cervix region and to adjust the weight distribution, without requiring any manual annotations of the cervix region. A novel iterative algorithm is designed to refine the regulator, which is able to capture the variations in cervix center locations and shapes. Experiments on an 18-year real-world dataset indicate a minimal of 3.47%, 4.59%, 8.54% improvements over the state-of-the-art in accuracy, F1, and recall measures, respectively.

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APA

Zhang, Y., Yin, Y., Liu, Z., & Zimmermann, R. (2021). A Spatial Regulated Patch-Wise Approach for Cervical Dysplasia Diagnosis. In 35th AAAI Conference on Artificial Intelligence, AAAI 2021 (Vol. 1, pp. 733–740). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/aaai.v35i1.16154

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